Python Statistics for Data Science Course Overview
Python Scripting allows programmers to build applications easily and rapidly. This course is an introduction to Python scripting, which focuses on the concepts of Python, it will help you to perform operations on variable types using Pycharm. You will learn the importance of Python in real time environment and will be able to develop applications based on Object Oriented Programming concept. At the end of this course, you will be able to develop networking applications with suitable GUI.
In this course you will:
Be introduced to data and its types and accordingly sample data and derive meaningful information from the data in terms different statistical parameters.
Learn about probability, interpret & solve real-life problems using probability. You will get to know the power of probability with Bayesian Inference.
Draw inferences from present data and construct predictive models using different inferential parameters (as a constraint).
Learn the different methods of testing the alternative hypothesis.
Get an introduction to Clustering as part of this Module which forms the basis for machine learning.
Learn the roots of Regression Modelling using statistics.
Goal: In this module, you will be introduced to data and its types and accordingly sample data and derive meaningful information from the data in terms different statistical parameters.
Objectives: At the end of this Module, you should be able to:
Understand various data types
Learn Various variable types
List the uses of variable types
Explain Population and Sample
Discuss sampling techniques
Understand Data representation
Topics:
Introduction to Data Types
Numerical parameters to represent data
Mean
Mode
Median
Sensitivity
Information Gain
Entropy
Statistical parameters to represent data
Hands-On/Demo
Estimating mean, median and mode using python
Calculating Information Gain and Entropy
Goal: In this module, you should learn about probability, interpret & solve real-life problems using probability. You will get to know the power of probability with Bayesian Inference.
Objectives: At the end of this Module, you should be able to:
Understand rules of probability
Learn about dependent and independent events
Implement conditional, marginal and joint probability using Bayes Theorem
Discuss probability distribution
Explain Central Limit Theorem
Topics:
Uses of probability
Need of probability
Bayesian Inference
Density Concepts
Normal Distribution Curve
Hands-On/Demo:
Calculating probability using python
Conditional, Joint and Marginal Probability using Python
Plotting a Normal distribution curve
Goal: Draw inferences from present data and construct predictive models using different inferential parameters (as a constraint).
Objectives: At the end of this Module, you should be able to:
Understand the concept of point estimation using confidence margin
Draw meaningful inferences using margin of error
Explore hypothesis testing and its different levels
Topics:
Point Estimation
Confidence Margin
Hypothesis Testing
Levels of Hypothesis Testing
Hands-On/Demo:
Calculating and generalizing point estimates using python
Estimation of Confidence Intervals and Margin of Error
Goal: In this module, you should learn the different methods of testing the alternative hypothesis.
Objectives: At the end of this module, you should be able to:
Understand Parametric and Non-parametric Testing
Learn various types of parametric testing
Discuss experimental designing
Explain a/b testing
Topics:
Parametric Test
Parametric Test Types
Non- Parametric Test
Experimental Designing
A/B testing
Hands-On/Demo:
Perform p test and t tests in python
A/B testing in python
Goal: Get an introduction to Clustering as part of this Module which forms the basis for machine learning.
Objectives: At the end of this module, you should be able to:
Understand the concept of association and dependence
Explain causation and correlation
Learn the concept of covariance
Discuss Simpson’s paradox
Illustrate Clustering Techniques
Topics:
Association and Dependence
Causation and Correlation
Covariance
Simpson’s Paradox
Clustering Techniques
Hands-On/Demo:
Correlation and Covariance in python
Hierarchical clustering in python
K means clustering in python
Goal: Learn the roots of Regression Modelling using statistics.
Objectives: At the end of this module, you should be able to:
Understand the concept of Linear Regression
Explain Logistic Regression
Implement WOE
Differentiate between heteroscedasticity and homoscedasticity
Learn the concept of residual analysis
Topics:
Logistic and Regression Techniques
Problem of Collinearity
WOE and IV
Residual Analysis
Heteroscedasticity
Homoscedasticity
Hands-On/Demo:
Perform Linear and Logistic Regression in python
Analyze the residuals using python
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We do not offer placement or placement assistance services at this time. However, our training is designed to equip you with in-demand skills, hands-on experience, and certification readiness to help you confidently pursue new career opportunities. Many of our learners have successfully transitioned into new roles or advanced in their careers based on the knowledge and certifications gained throughĀ ourĀ programs